首页> 外文会议>IEEE International Conference on Computer Science and Network Technology >Predictions of COVID-19 Infection Severity Based on Co-associations between the SNPs of Co-morbid Diseases and COVID-19 through Machine Learning of Genetic Data
【24h】

Predictions of COVID-19 Infection Severity Based on Co-associations between the SNPs of Co-morbid Diseases and COVID-19 through Machine Learning of Genetic Data

机译:基于遗传数据的机器学习,基于Co-Movid疾病和Covid-19的SNP与Covid-19之间的共关联的Covid-19感染严重程度的预测

获取原文

摘要

In this research, a quantitative model is built to predict people's susceptibility to COVID-19 based on their genomes. Identifying people vulnerable to COVID-19 infections is crucial in stopping the spread of the virus. In previous studies, researchers have found that individuals with comorbid diseases have higher chances of being infected and developing more severe COVID-19 conditions. However, these patterns are only observed through correlational analyses between patient phenotypes and the severity of their COVID-19 infection. In this study, genetic variants underlying the observed comorbidity patterns are analyzed through machine learning of COVID-19 data from GWAS studies, which may reveal biological pathways underlying COVID-19 contraction that are essential to the development of effective and targeted therapeutics. Furthermore, through combining genetic variants with the individual's phenotypes, this study built a Neural Network model and Random Forest classifier to predict an individual's likelihood of COVID-19 infection. The Random Forest Classifier in this study shows that on-going symptoms are generally better predictors of COVID-19 condition (higher impurity-based feature importance) than diseases or medical histories. In addition, when trained with genomic data, the comorbid disease impact ranking deduced by the resulting RF model is highly consistent with phenotypic comorbidity patterns observed in past studies.
机译:在这项研究中,建立了定量模型,以预测人们基于其基因组的人们对Covid-19的敏感性。识别易受Covid-19感染的人们在阻止病毒的蔓延至关重要。在以前的研究中,研究人员发现,具有共用疾病的个体具有感染和发展更严重的Covid-19条件的较高机会。然而,这些模式仅通过患者表型与其Covid-19感染的严重程度之间的相关分析来观察到。在该研究中,通过来自GWAS研究的Covid-19数据的机器学习分析了所观察到的合并图的遗传变体,这可能揭示Covid-19收缩的生物途径,这对有效和靶向治疗的发展至关重要。此外,通过将遗传变异与个体的表型组合,本研究建立了一个神经网络模型和随机林分类器,以预测个人Covid-19感染的可能性。本研究中随机森林分类器表明,持续的症状通常更好地预测Covid-19条件(基于杂质的特征重要性),而不是疾病或医学历史。此外,当用基因组数据训练时,由所得RF模型推导的分配疾病的影响等级与过去研究中观察到的表型化合并症的高度一致。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号